Login / Signup

Balancing effort and benefit of K-means clustering algorithms in Big Data realms.

Joaquín Pérez-OrtegaNelva Nely Almanza-OrtegaDavid Romero
Published in: PloS one (2018)
In this paper we propose a criterion to balance the processing time and the solution quality of k-means cluster algorithms when applied to instances where the number n of objects is big. The majority of the known strategies aimed to improve the performance of k-means algorithms are related to the initialization or classification steps. In contrast, our criterion applies in the convergence step, namely, the process stops whenever the number of objects that change their assigned cluster at any iteration is lower than a given threshold. Through computer experimentation with synthetic and real instances, we found that a threshold close to 0.03n involves a decrease in computing time of about a factor 4/100, yielding solutions whose quality reduces by less than two percent. These findings naturally suggest the usefulness of our criterion in Big Data realms.
Keyphrases
  • big data
  • machine learning
  • artificial intelligence
  • deep learning
  • magnetic resonance
  • single cell
  • magnetic resonance imaging
  • contrast enhanced